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Multi-criteria computational screening of [BMIM][DCA]@MOF composites for CO2 capture

Mengjia Sheng, Xiang Zhang, Hongye Cheng, Zhen Song, Zhiwen Qi

2024Green Chemical Engineering18 citationsDOIOpen Access PDF

Abstract

Ionic liquid (IL) can be inserted into metal organic framework (MOF) to form IL@MOF composite with enhanced properties. In this work, hypothetical IL@MOFs were computationally constructed and screened by integrating molecular simulation and convolutional neural network (CNN) for CO2 capture. First, the IL [BMIM][DCA] with a large CO2 solubility was inserted into 1631 pre-selected Computational-Ready Experimental (CoRE) MOFs to create hypothetical IL@MOFs. Then, given the temperature and pressure of adsorption and desorption, the CO2/N2 selectivity and CO2 working capacity of 700 representative IL@MOFs were assessed via molecular simulations. Based on the results, two CNN models were trained and used to predict the performance of other IL@MOFs, which reduces the computational costs effectively. By combining the simulation results and CNN model predictions, 22 IL@MOFs with top-ranked performance were identified. Three distinct ones IL@HABDAS, IL@GUBKUL, and IL@MARJAQ were chosen for explicit analysis. It was found that a desired balance between CO2/N2 selectivity and CO2 working capacity can be obtained by inserting the optimal number of IL molecules. This helps guide a novel design of IL@MOF composites with advanced performance on carbon capture.

Topics & Concepts

Ionic liquidSelectivityMaterials scienceAdsorptionMetal-organic frameworkDesorptionComposite numberComputer scienceConvolutional neural networkChemical engineeringNanotechnologyComposite materialChemistryMachine learningOrganic chemistryEngineeringCatalysisMetal-Organic Frameworks: Synthesis and ApplicationsIonic liquids properties and applicationsCarbon dioxide utilization in catalysis